CLAISDMay 28

MusTBENCH: Benchmarking and Advancing Temporal Grounding in Music LLMs

arXiv:2605.2930085.8h-index: 9
Predicted impact top 49% in CL · last 90 daysOriginality Incremental advance
AI Analysis

For researchers in music AI, this work identifies and addresses a critical gap in temporal grounding capabilities of large audio-language models.

The paper introduces MusTBENCH, a benchmark to evaluate temporal grounding in music LLMs, and proposes MusT, a four-stage optimization recipe that significantly improves temporal grounding over existing models.

Recent Large Audio-Language Models (LALMs) have demonstrated promising abilities in understanding musical content. However, whether their responses are grounded in the correct temporal regions of the audio remains underexplored. This limitation is particularly critical for music understanding, where key information often occurs as temporally localized events, such as instrument entries and rhythmic transitions. To address this gap, we introduce MusTBENCH, a music-expert-validated benchmark designed to evaluate temporal grounding in LALMs through five temporally grounded question-answering tasks. To further improve temporal grounding in existing models, we propose MusT, a novel four-stage temporal optimization recipe spanning music encoder adaptation, LLM adaptation, LLM supervised fine-tuning, and RL-based optimization. Experiments on MusTBENCH show that existing LALMs struggle with precise temporal grounding, while MusT brings significant improvements over strong baselines. These results establish temporal grounding as a key missing capability in current LALMs and position MusTBENCH as a challenging benchmark for future research in temporally grounded music understanding.

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